Machine Learning Approach for Diabetes Detection Using Fine-Tuned XGBoost Algorithm

Aga Maulana, Farassa Rani Faisal, Teuku Rizky Noviandy, Tatsa Rizkia, Ghazi Mauer Idroes, Trina Ekawati Tallei, Mohamed El-Shazly, Rinaldi Idroes
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引用次数: 5

Abstract

Diabetes is a chronic condition characterized by elevated blood glucose levels which leads to organ dysfunction and an increased risk of premature death. The global prevalence of diabetes has been rising, necessitating an accurate and timely diagnosis to achieve the most effective management. Recent advancements in the field of machine learning have opened new possibilities for improving diabetes detection and management. In this study, we propose a fine-tuned XGBoost model for diabetes detection. We use the Pima Indian Diabetes dataset and employ a random search for hyperparameter tuning. The fine-tuned XGBoost model is compared with six other popular machine learning models and achieves the highest performance in accuracy, precision, sensitivity, and F1-score. This study demonstrates the potential of the fine-tuned XGBoost model as a robust and efficient tool for diabetes detection. The insights of this study advance medical diagnostics for efficient and personalized management of diabetes.
基于微调XGBoost算法的糖尿病检测机器学习方法
糖尿病是一种慢性疾病,其特征是血糖水平升高,导致器官功能障碍和过早死亡的风险增加。糖尿病的全球患病率一直在上升,需要准确和及时的诊断,以实现最有效的管理。机器学习领域的最新进展为改善糖尿病的检测和管理开辟了新的可能性。在这项研究中,我们提出了一个微调的XGBoost糖尿病检测模型。我们使用皮马印第安糖尿病数据集,并采用随机搜索超参数调优。经过微调的XGBoost模型与其他六种流行的机器学习模型进行了比较,在准确性、精密度、灵敏度和f1分数方面达到了最高的性能。这项研究证明了微调后的XGBoost模型作为一种强大而有效的糖尿病检测工具的潜力。这项研究的见解促进了医学诊断对糖尿病的有效和个性化管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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